Model Explainability with AWS Artificial Intelligence and Machine Learning Solutions
Publication date: September 10, 2021 (Document history)
Organizations now utilize artificial intelligence and machine learning (AI/ML) solutions to transform their businesses. With this transformation comes the need to ensure that AI/ML models are trustworthy and understandable. This whitepaper outlines the application of model explainability with real-world use cases for institutions using ML. It describes how you can apply model explainability methods to your Amazon Web Services (AWS) AI/ML solutions to meet regulatory compliances, ensure stakeholder trust, provide model transparency, and add business value. This whitepaper is intended for business and technical leaders who are pursuing AI/ML solutions and want additional business value and AI/ML trust by adopting model explainability within their organizations.
Introduction
The purpose of model explainability is to create an understandable solution which
can communicate results of AI/ML technology. This field has been expressed as explainable
artificial intelligence
By using the best model explainability method based on an AI/ML use case, customers can trust an automated solution to meet business objectives. This paper serves as a guide to:
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Understand model explainability and differentiate between interpretability versus explainability given respective applications.
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Utilize a model explainability assessment score card to determine optimal methods and tools to satisfy business requirements.
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Accelerate explainability initiatives by comparing provided common industry use cases.
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In the Machine Learning Lens, we focus on how to design, deploy, and architect your machine learning workloads in the AWS Cloud. This lens adds to the best practices described in the Well-Architected Framework.
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